Computer-Aided Tools and Resources for Fungal Pathogens: An Application of Reverse Vaccinology for Mucormycosis.

Q3 Medicine
Anasuya Bhargav, Firdaus Fatima, Pratibha Chaurasia, Surabhi Seth, Srinivasan Ramachandran
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引用次数: 1

Abstract

Increasing fungal infections in immunocompromised hosts are a growing concern for global public health. Along with treatments, preventive measures are required. The emergence of reverse vaccinology has opened avenues for using genomic and proteomic data from pathogens in the design of vaccines. In this work, we present a comprehensive collection of various computational tools and databases with potential to aid in vaccine development. The ongoing pandemic has directed attention toward the increasing number of mucormycosis infections in COVID-19 patients. As a case study, we developed a computational pipeline for assisting vaccine development for mucormycosis. We obtained 6 proteins from 29,447 sequences from UniProtKB as potential vaccine candidates against mucormycosis, fulfilling multiple criteria. These criteria included potential characteristics, namely adhesin properties, surface or extracellular localization, antigenicity, no similarity to any human proteins, nonallergenicity, stability in vitro, and expression in fungal cells. These six proteins were predicted to have B cell and T cell epitopes, proinflammatory inducing peptides, and orthologs in several mucormycosis-causing species. These data could aid in vaccine development against mucormycosis for at-risk individuals.

真菌病原体的计算机辅助工具和资源:毛霉病反向疫苗学的应用。
免疫功能低下的宿主中真菌感染的增加日益引起全球公共卫生的关注。除治疗外,还需要采取预防措施。反向疫苗学的出现为在疫苗设计中使用病原体的基因组和蛋白质组学数据开辟了途径。在这项工作中,我们提出了各种计算工具和数据库的综合收集,具有帮助疫苗开发的潜力。持续的大流行将注意力转向了COVID-19患者中毛霉病感染人数的增加。作为一个案例研究,我们开发了一个计算管道来协助毛霉病疫苗的开发。我们从UniProtKB的29,447个序列中获得6个蛋白作为毛霉病的潜在候选疫苗,满足多个标准。这些标准包括潜在的特征,即粘附素特性、表面或细胞外定位、抗原性、与任何人类蛋白质不相似、非致敏性、体外稳定性以及在真菌细胞中的表达。据预测,这六种蛋白在几种引起毛霉病的物种中具有B细胞和T细胞表位、促炎诱导肽和同源物。这些数据有助于开发针对高危人群的毛霉病疫苗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
49
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